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Indoor contaminant source estimation using a multiple model unscented Kalman filter

机译:使用多模型无味卡尔曼滤波器估算室内污染物源

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The contaminant source estimation problem is getting increasing importance due to more and more occurrences of sick building syndrome and attacks from covert chemical warfare agents. To monitor a building contamination condition, a number of sensors are connected through a network, and the sensor measurements are sent to a fusion center to estimate contaminant source information. An estimation algorithm is required such that timely actions can be taken to mitigate the adverse effects. This paper proposes a multiple model unscented Kalman filter (MM-UKF) to estimate the contaminant source location, the source emission rate and the release time. A simulation test is conducted on a computer generated three-story building. The results show that the MM-UKF algorithm can achieve real-time estimation.
机译:由于越来越多的病态建筑综合症和秘密化学战剂的袭击,污染物源估计问题变得越来越重要。为了监视建筑物的污染状况,通过网络连接了多个传感器,并将传感器的测量值发送到融合中心以估算污染物源信息。需要一种估计算法,以便可以及时采取措施来减轻不利影响。本文提出了一种多模型无味卡尔曼滤波器(MM-UKF)来估计污染物源位置,源排放速率和释放时间。在计算机生成的三层建筑物上进行了模拟测试。结果表明,MM-UKF算法可以实现实时估计。

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